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Erschienen in: Electrical Engineering 1/2015

01.03.2015 | Original Paper

A comparative study of multi-objective optimal power flow based on particle swarm, evolutionary programming, and genetic algorithm

verfasst von: Solmaz Kahourzade, Amin Mahmoudi, Hazlie Bin Mokhlis

Erschienen in: Electrical Engineering | Ausgabe 1/2015

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Abstract

This paper compares the performance of three population-based algorithms including particle swarm optimization (PSO), evolutionary programming (EP), and genetic algorithm (GA) to solve the multi-objective optimal power flow (OPF) problem. The unattractive characteristics of the cost-based OPF including loss, voltage profile, and emission justifies the necessity of multi-objective OPF study. This study presents the programming results of the nine essential single-objective and multi-objective functions of OPF problem. The considered objective functions include cost, active power loss, voltage stability index, and emission. The multi-objective optimizations include cost and active power loss, cost and voltage stability index, active power loss and voltage stability index, cost and emission, and finally cost, active power loss, and voltage stability index. To solve the multi-objective OPF problem, Pareto optimal method is used to form the Pareto optimal set. A fuzzy decision-based mechanism is applied to select the best comprised solution. In this work, to decrease the running time of load flow calculation, a new approach including combined Newton–Raphson and Fast-Decouple is conducted. The proposed methods are tested on IEEE 30-bus test system and the best method for each objective is determined based on the total cost and the convergence values of the considered objectives. The programming results indicate that based on the inter-related nature of the objective functions, a control system cannot be recommended based on individual optimizations and the secondary criteria should also be considered.

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Metadaten
Titel
A comparative study of multi-objective optimal power flow based on particle swarm, evolutionary programming, and genetic algorithm
verfasst von
Solmaz Kahourzade
Amin Mahmoudi
Hazlie Bin Mokhlis
Publikationsdatum
01.03.2015
Verlag
Springer Berlin Heidelberg
Erschienen in
Electrical Engineering / Ausgabe 1/2015
Print ISSN: 0948-7921
Elektronische ISSN: 1432-0487
DOI
https://doi.org/10.1007/s00202-014-0307-0

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